Query language constructs for provenance

Murali Mani, M. Alawa, A. Kalyanasundaram
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引用次数: 2

Abstract

Provenance that records the derivation history of data is useful for a wide variety of applications, including those where an audit trail needs to be provided, where the sources and the trust-level attributed to the sources contribute to determining the trust-level in results etc. There have been different efforts in the past for representing provenance information, the most notable being the Open Provenance Model (OPM). OPM defines structures for representing the provenance information as a graph with nodes and edges, and also specifies inference queries. Our work builds on these by proposing query language constructs, that the users will find useful for manipulating the provenance information. Rather than specifying a query language, we define two classes of algebraic constructs: content-based operators that operate on the content of nodes and edges, and structure-based operators that operate on the graph structure of the provenance graph. These content-based and the structure-based constructs can be combined to express a wide variety of interesting queries on the provenance data that go much beyond simple inference queries as expressible using Datalog/SQL.
查询语言构造的来源
记录数据派生历史的来源对于各种各样的应用程序都很有用,包括那些需要提供审计跟踪的应用程序,在这些应用程序中,源和归属于源的信任级别有助于确定结果中的信任级别等。在过去有不同的方法来表示来源信息,最著名的是开放来源模型(OPM)。OPM定义了将来源信息表示为带有节点和边的图的结构,还指定了推理查询。我们的工作建立在这些基础上,提出了查询语言结构,用户会发现这些查询语言结构对操作来源信息很有用。我们没有指定查询语言,而是定义了两类代数构造:基于内容的操作符(操作节点和边的内容)和基于结构的操作符(操作源图的图结构)。这些基于内容的构造和基于结构的构造可以组合在一起,以表达对来源数据的各种有趣查询,这些查询远远超出了使用Datalog/SQL可表达的简单推理查询。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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